基于自监督特征学习和光束搜索的点云配准

Guofeng Mei
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引用次数: 5

摘要

由于深度学习的成功,无对应点云配准方法取得了显着的性能改进,它在联合框架中优化了特征推断和配准。然而,仍有一些限制阻碍了实际应用的有效性。一方面,大多数现有的无对应的方法都是局部最优的,当旋转较大时,它们往往会失败。另一方面,当训练一个特征提取器时,这些方法通常需要从手动标记的数据中获得有监督的信息,这是乏味和劳动密集型的。本文提出了一种有效的点云配准方法来解决这些问题,该方法建立在无通信范式的基础上。我们的方法将自监督特征学习与三维旋转空间中的光束搜索方案相结合,可以很好地适应大旋转的情况。我们进行了大量的实验,以证明我们的方法在合成数据和真实数据的效率和准确性方面优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Point Cloud Registration with Self-supervised Feature Learning and Beam Search
Correspondence-free point cloud registration approaches have achieved notable performance improvement due to deep learning success, which optimizes the feature inference and registration in a joint framework. However, there are still several limitations that impede the effectiveness of practical applications. For one thing, most existing correspondences-free methods are locally optimal, and they tend to fail when the rotation is large. For another, when training a feature extractor, these approaches usually need supervised information from manually labeled data, which is tedious and labor-intensive. This paper proposes an effective point cloud registration method to resolve these issues, which is built upon a correspondence-free paradigm. Our approach combines self-supervised feature learning with a beam search scheme in the 3D rotation space, which can well adjust to the case of large rotation. We conduct extensive experiments to demonstrate that our approach can outperform state-of-the-art methods in terms of efficiency and accuracy across synthetic and real-world data.
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